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Minimax density estimation for growing dimension

Abstract

This paper presents minimax rates for density estimation when the data dimension dd is allowed to grow with the number of observations nn rather than remaining fixed as in previous analyses. We prove a non-asymptotic lower bound which gives the worst-case rate over standard classes of smooth densities, and we show that kernel density estimators achieve this rate. We also give oracle choices for the bandwidth and derive the fastest rate dd can grow with nn to maintain estimation consistency.

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